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SE(3) Equivariant Convolution and Transformer in Ray Space

Part of Advances in Neural Information Processing Systems 36 (NeurIPS 2023) Main Conference Track

Bibtex Paper Supplemental

Authors

Yinshuang Xu, Jiahui Lei, Kostas Daniilidis

Abstract

3D reconstruction and novel view rendering can greatly benefit from geometric priors when the input views are not sufficient in terms of coverage and inter-view baselines. Deep learning of geometric priors from 2D images requires each image to be represented in a 2D canonical frame and the prior to be learned in a given or learned 3D canonical frame. In this paper, given only the relative poses of the cameras, we show how to learn priors from multiple views equivariant to coordinate frame transformations by proposing an SE(3)-equivariant convolution and transformer in the space of rays in 3D. We model the ray space as a homogeneous space of SE(3) and introduce the SE(3)-equivariant convolution in ray space. Depending on the output domain of the convolution, we present convolution-based SE(3)-equivariant maps from ray space to ray space and to R3. Our mathematical framework allows us to go beyond convolution to SE(3)-equivariant attention in the ray space. We showcase how to tailor and adapt the equivariant convolution and transformer in the tasks of equivariant 3D reconstruction and equivariant neural rendering from multiple views. We demonstrate SE(3)-equivariance by obtaining robust results in roto-translated datasets without performing transformation augmentation.